English

A Conditioned UNet for Music Source Separation

Sound 2025-12-19 v1 Artificial Intelligence Machine Learning Audio and Speech Processing

Abstract

In this paper we propose a conditioned UNet for Music Source Separation (MSS). MSS is generally performed by multi-output neural networks, typically UNets, with each output representing a particular stem from a predefined instrument vocabulary. In contrast, conditioned MSS networks accept an audio query related to a stem of interest alongside the signal from which that stem is to be extracted. Thus, a strict vocabulary is not required and this enables more realistic tasks in MSS. The potential of conditioned approaches for such tasks has been somewhat hidden due to a lack of suitable data, an issue recently addressed with the MoisesDb dataset. A recent method, Banquet, employs this dataset with promising results seen on larger vocabularies. Banquet uses Bandsplit RNN rather than a UNet and the authors state that UNets should not be suitable for conditioned MSS. We counter this argument and propose QSCNet, a novel conditioned UNet for MSS that integrates network conditioning elements in the Sparse Compressed Network for MSS. We find QSCNet to outperform Banquet by over 1dB SNR on a couple of MSS tasks, while using less than half the number of parameters.

Keywords

Cite

@article{arxiv.2512.15532,
  title  = {A Conditioned UNet for Music Source Separation},
  author = {Ken O'Hanlon and Basil Woods and Lin Wang and Mark Sandler},
  journal= {arXiv preprint arXiv:2512.15532},
  year   = {2025}
}
R2 v1 2026-07-01T08:29:24.613Z